Distilling base-and-meta network with contrastive learning for few-shot semantic segmentation
Xinyue Chen,
Yueyi Wang,
Yingyue Xu
et al.
Abstract:Current studies in few-shot semantic segmentation mostly utilize meta-learning frameworks to obtain models that can be generalized to new categories. However, these models trained on base classes with sufficient annotated samples are biased towards these base classes, which results in semantic confusion and ambiguity between base classes and new classes. A strategy is to use an additional base learner to recognize the objects of base classes and then refine the prediction results output by the meta learner. In… Show more
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